SOTAVerified

Small Object Detection

Small Object Detection is a computer vision task that involves detecting and localizing small objects in images or videos. This task is challenging due to the small size and low resolution of the objects, as well as other factors such as occlusion, background clutter, and variations in lighting conditions.

( Image credit: Feature-Fused SSD )

Papers

Showing 4150 of 152 papers

TitleStatusHype
Select-Mosaic: Data Augmentation Method for Dense Small Object ScenesCode0
SOAR: Advancements in Small Body Object Detection for Aerial Imagery Using State Space Models and Programmable Gradients0
Constellation Dataset: Benchmarking High-Altitude Object Detection for an Urban IntersectionCode1
FOOL: Addressing the Downlink Bottleneck in Satellite Computing with Neural Feature CompressionCode1
HCF-Net: Hierarchical Context Fusion Network for Infrared Small Object DetectionCode2
FLAME Diffuser: Wildfire Image Synthesis using Mask Guided DiffusionCode1
YOLO-TLA: An Efficient and Lightweight Small Object Detection Model based on YOLOv50
YOLO-Ant: A Lightweight Detector via Depthwise Separable Convolutional and Large Kernel Design for Antenna Interference Source DetectionCode0
Small Object Detection by DETR via Information Augmentation and Adaptive Feature Fusion0
Dr^2Net: Dynamic Reversible Dual-Residual Networks for Memory-Efficient FinetuningCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Weighted Box Fusion (WBF)AP5030.3Unverified
2GFL + Test Time AugmentationAP5023.7Unverified
3DL method (YOLOv8 + Ensamble)AP5022.9Unverified
4Swin Transformer + Hierarchical designAP5022.6Unverified
5E2 method (Normalized Gaussian Wasserstein Distance + Switch Hard Augmentation + Multi scale train + Weight Moving Average + CenterNet + VarifocalNet)AP5022.1Unverified
#ModelMetricClaimedVerifiedStatus
1Weighted Box Fusion (WBF)AP5077.6Unverified
2GFL + Test Time AugmentationAP5073.1Unverified
3DL method (YOLOv8 + Ensamble)AP5073.1Unverified
4Swin Transformer + Hierarchical designAP5070.2Unverified
5E2 method (Normalized Gaussian Wasserstein Distance + Switch Hard Augmentation + Multi scale train + Weight Moving Average + CenterNet + VarifocalNet)AP5069.6Unverified
#ModelMetricClaimedVerifiedStatus
1BeeDetectorAverage F10.86Unverified
#ModelMetricClaimedVerifiedStatus
1CFINetmAP@0.5:0.9530.7Unverified